Marine oil spill detection and segmentation in SAR data with two steps Deep Learning framework

被引:2
|
作者
Trujillo-Acatitla, Rubicel [1 ]
Tuxpan-Vargas, Jose [1 ,4 ]
Ovando-Vazquez, Cesare [2 ,3 ,4 ]
Monterrubio-Martinez, Erandi [1 ]
机构
[1] Inst Potosino Invest Cient & Tecnol AC, Div Geociencias Aplicadas, Camino Presa San Jose 2055, San Luis Potosi 78216, San Luis Potosi, Mexico
[2] Inst Potosino Invest Cient & Tecnol AC, Div Mol Biol, Camino Presa San Jose 2055,Lomas 4ta Secc, San Luis Potosi 78216, San Luis Potosi, Mexico
[3] Inst Potosino Invest Cient & Tecnol AC, Ctr Nacl Supercomputo CNS, Camino Presa San Jose 2055,Colonia Lomas Secc 4ta, San Luis Potosi 78216, San Luis Potosi, Mexico
[4] Consejo Nacl Humanidades Ciencias & Tecnol, Catedras CONAHCyT, Mexico City 03940, Mexico
关键词
Oil spill; Sentinel-1; SAR; Deep learning; Classification; Segmentation; FEATURE-SELECTION; NEURAL-NETWORKS; SATELLITE; CLASSIFICATION;
D O I
10.1016/j.marpolbul.2024.116549
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Marine oil spills pose significant ecological and economic threats worldwide, requiring effective decision-making tools. In this study, the optimal parameters, and configurations for Deep Learning models in oil spill classification and segmentation using Sentinel-1 SAR imagery were identified. First, a new Sentinel-1 image dataset was created. Ninety CNN configurations were explored for classification by varying the number of convolutional layers, filters, hidden layers, and neurons in each layer. For segmentation tasks, MLP and U-Net models were evaluated with variations in convolutional layers, filters, and incorporation of IoU and Focal Loss. The results indicated that a CNN model with six layers, 32 filters, and two hidden layers achieved 99 % classification accuracy. For segmentation, the U-Net model with more layers and filters using Focal Loss achieved 99 % accuracy and 96 % IoU. Therefore, a CNN and U-Net framework was proposed that achieves an overall accuracy of 95 % and an IoU of 90 %.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] Support Tucker machines based marine oil spill detection using SAR images
    Ma, Liyong
    INDIAN JOURNAL OF GEO-MARINE SCIENCES, 2016, 45 (11) : 1445 - 1449
  • [32] Advances in Remote Sensing Technology, Machine Learning and Deep Learning for Marine Oil Spill Detection, Prediction and Vulnerability Assessment
    Temitope Yekeen, Shamsudeen
    Balogun, Abdul-Lateef
    REMOTE SENSING, 2020, 12 (20) : 1 - 31
  • [33] SAR-based oil spill detection and impact assessment on coastal and marine environments
    Muhammad Ozair
    Muhammad Farooq Iqbal
    Irfan Mahmood
    Saima Naz
    Acta Oceanologica Sinica, 2024, 43 (12) : 123 - 140
  • [34] SAR images Thresholding For Oil Spill Detection
    El-Zaart, Ali
    Ghosn, Ali A.
    2013 SAUDI INTERNATIONAL ELECTRONICS, COMMUNICATIONS AND PHOTONICS CONFERENCE (SIECPC), 2013,
  • [35] Introduction of infomax learning algorithm and application for oil spill detection in SAR images
    Obi, Shinzo
    Okajima, Kenji
    Koizumi, Yoshinori
    Murata, Minoru
    IEEJ Transactions on Fundamentals and Materials, 2006, 126 (06) : 496 - 503
  • [37] Automatic decision support system based on SAR data for oil spill detection
    Mera, David
    Cotos, Jose M.
    Varela-Pet, Jose
    Rodriguez, Pablo G.
    Caro, Andres
    COMPUTERS & GEOSCIENCES, 2014, 72 : 184 - 191
  • [38] The Use of Environmental Data in Reliability Assessment of Oil Spill Detection by SAR Imagery
    Tahvonen, Kati
    Pyhalahti, Timo
    2006 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, VOLS 1-8, 2006, : 3688 - 3691
  • [39] Neural networks for oil spill detection using ERS-SAR data
    Del Frate, F
    Petrocchi, A
    Lichtenegger, J
    Calabresi, G
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2000, 38 (05): : 2282 - 2287
  • [40] Multiphysical Interpretable Deep Learning Network for Oil Spill Identification Based on SAR Images
    Fan, Jianchao
    Sui, Zitai
    Wang, Xinzhe
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2024, 62 : 1 - 15